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Transcript
Reverse Engineering Using a Subdivision Surface Scheme
Anshuman Razdan, Pornchai Mongkolnam, Gerald Farin
E-mails: [email protected], [email protected], [email protected]
Partnership for Research in Spatial Modeling (PRISM) and
Department of Computer Science and Engineering
Arizona State University, Tempe, Arizona, USA
Abstract
Subdivision surfaces are finding their way into many Computer Aided Design and Animation
packages. Popular choices include Loop, Catmull-Clark, Doo-Sabin etc. Subdivision surfaces
have many design advantages over traditional use of NURBs. NURB surfaces always are
problematic when multiple patches meet.
Reverse engineering (RE) is associated with the idea of scanning physical objects and
representing the resulting dense cloud of points with mathematical surfaces. In RE the goal is to
convert the dense point of scanned points into a patchwork of NURB surfaces with most effort
going into automating the process. With the emergence of subdivision surfaces as popular
modeling tools, it only follows that a similar process be devised for this class of surfaces. Our
paper looks at developing one such method for Loop surfaces.
Given a dense triangular mesh, we would like to obtain a control mesh for a Loop subdivision
surface which approximates the given mesh. This process benefits subdivision surfaces in
animation and manipulation as mentioned in [DeR98] that need speed over accuracy with an
ability to manipulate the control mesh and to regenerate the smooth surface quickly. Like
subdivision wavelets in a multi-resolution analysis [Lou97], our method can perform level-ofdetails (LOD) with arbitrary topological meshes useful in applications requiring a fast transfer,
less storage, and a fast rendering and interaction.
The paper shows the process as well as some early results which are promising. The resulting
coarse control mesh is approximately 6.25% of the original mesh therefore this method can also
be used as a lossy compression scheme.
1
Introduction
Given dense unorganized data points such as a point cloud from a range scanner, a triangle
mesh can be constructed by various methods [Ede94 [Ame98], [Hop92]and [Ber99]. However,
triangular meshes obtained are piecewise linear surfaces. For editing, modeling, etc. dense
triangle meshes are not optimal solution. Dense triangle meshes with lot of detail are expensive
to represent, store, transmit and manipulate. A tensor product NURBS (Non Uniform Rational BSplines) [Far96] and B-splines are the most popular smooth surface representations. Considerable
work has been done on fitting B-spline surfaces to three-dimensional points. This process is often
called the Reverse Engineering process wherein a digital representation of the physical object is
created. We cite the works of [Loo90], [Ma95], [Eck96], [For88], [For95] and [Kri96] as serious
contributions to RE using NURBS/B-splines.
A B-spline surface is a parametric surface, and it needs a parametric domain. [Flo97] and
[Flo01] proposed methods for parameterizing a triangular mesh and unorganized points
respectively for a single surface patch. A single B-spline patch can only model surfaces with
simple topological types such as deformed planar regions, cylinders, and tori. Therefore, it is
impossible to use a single non-degenerate B-spline to model general closed surfaces or surfaces
with handles. Multiple B-spline patches are needed for arbitrary topological surfaces; however,
there are some geometric continuity conditions that must be met for adjacent patches. Therefore,
using NURBS/B-splines is not the most desirable approach since it requires high-dimensional
constrained optimization. A subdivision surface scheme such as Loops, does not suffer from these
problems, has compact storage and simple representation (as triangle base mesh) and can be
evaluated on the fly to any resolution with ease. It does not require computation of a domain
surface. Hence, it is the focus of this paper.
Lee et al. [Lee00] was the first to unify subdivision surfaces and displacement maps and this
was followed by later work [Jeo01]. Our work has been inspired by previous research on multiresolution analysis [Lou97] and displaced subdivision surfaced [Lee00]. Similar in nature to the
subdivision wavelets, we would like to obtain a control mesh approximating original surface with
small magnitude of details (as a scalar function) needed to best reconstruct an approximation of
the original mesh (Figure 1). The benefit of using a scalar-valued function is that its
representation is more compact than its traditional counterpart, a vector-valued geometry
representation as used in [Kri96]. One of our contributions is to obtain a control mesh with very
small magnitude of displaced values (details) in order to have a very high compression ratio while
preserving surface details given a semi-regular (subdivision connectivity) of the original mesh.
(a) original mesh
(b) control mesh
(c) displaced subdivision surface
Figure 1: Example of an original mesh, its control mesh and its displaced subdivision surface.
2
2
Related Work
2.1
Subdivision surfaces
A subdivision surface is defined by a refinement of an initial control mesh. In the limit of the
refinement process, a smooth surface is obtained. Doo and Sabin [Doo78], and Catmull and Clark
[Cat78] first introduced subdivision schemes based on quadrilateral meshes. Their schemes
respectively generalized bi-quadratic and bi-cubic tensor product B-splines [Far96]. The
triangular based subdivision scheme was introduced by Loop [Loo87] which was a generalization
of C2 quartic triangular B-splines [Far96].
Some authors combined B-splines and subdivision for surface fitting and surface
reconstruction. [Tak00] used a Doo-Sabin subdivision scheme [Doo78] to fit a surface to a dense
triangular mesh and automatically constructed B-spline surfaces from the subdivision surface.
[Ma00] proposed a Catmull-Clark subdivision [Cat78] surface fitting as a network of smoothly
connected bi-cubic B-spline surfaces.
Hoppe et al. [Hop94] presented a piecewise smooth surface fitting method to scattered range
data points using Loop subdivision scheme [Loo87] to fit the data through an optimization
process. The method could model surface of arbitrary topology. The subdivision rules were
locally modified to model sharp features such as creases and corners. They used approach by
[Hop92] to construct the triangular mesh from the given unorganized points. The number of
triangles is reduced and improved by optimizing the energy function as in [Hop93]. Then they
employed the energy function optimization to fit a piecewise smooth subdivision surface to the
piecewise linear surface obtained from the second phase.
Suzuki et al. [Suz99] used the subdivision limit position (SLP) to repeatedly adjust a control
mesh and subdivide it to fit the data points of arbitrary topological objects in their surface fitting
method. It quickly captured the geometrical shape of the object because the fitting was made
locally at each vertex instead of having to solve a large linear system of equations as done in
[Hop94]. It however fails to preserve the sharp features, however.
Lee et al. [Lee00] proposed a new surface representation to an arbitrary triangle mesh,
namely a displaced subdivision surface. It generated a detailed surface by displacing a scalarvalued offset over a smooth parametric domain surface instead of using a vector-valued
displacement map. To obtain an initial control mesh, a sequence of edge collapse transformation
is used to simplify the original mesh. The smooth domain surface is then obtained by applying a
number of levels of the Loop subdivision to the initial control mesh, and then at each vertex of
this subdivided mesh the SLP (surface limit point) as well as its normal is computed. Finally, the
signed distance is computed from the limit point to the original surface along the normal. To get
the reconstructed smooth surface to the data points, the control mesh is subdivided to a given
level where the displacement are computed, and then the displacement map is added to the
subdivided mesh producing the approximated smooth surface.
Unlike [Lee00], Jeong et al. [Jeo01] constructed the displaced subdivision surface directly
from a point cloud which was homeomorphic to a sphere instead of constructing it from a
triangular mesh. The initial control mesh was generated by successively subdividing a bounding
cube, smoothing and projecting it to the given point cloud in a shrink-wrapping manner. The
reconstructed smooth surface is obtained by adding the displacement to the control mesh
subdivided after a certain level.
2.2
Remeshing
Remeshing means to convert a general triangle mesh and into a semi-regular mesh. It is
called a semi-regular mesh because most vertices are regular (valence six) except at some vertices
3
(vertices from a control mesh not having valence six). Remesh algorithms have been proposed by
[Eck95], [Lee98], [Kob99], and [Hor01]. Semi-regular mesh can be used for multi-resolution
analysis. Through the remeshing process a parameterization can be constructed and used in other
contexts such as texture mapping or NURBS patches.
3
Our Work
(a) original
(b) simplified
(c) adjusted
(d) subdivided and displaced
Figure 2: The Remesh process
The overview of our method is as follows: an original mesh is simplified by a quadric error
metric (QEM) based on [Gar97] to get a simplified control mesh. We decimate the mesh to 6.25%
of the number of original triangles. Based on [Suz99], the control mesh is then adjusted such that
after some levels of subdivision the control mesh vertices lie close to the original surface. The
adjusted control mesh is then subdivided using the Loop’s scheme [Loo87] for two levels
obtaining subdivided mesh with its number of triangles close to that of the original mesh. Based
on [Lee00], the subdivided mesh vertices are then displaced to the original surface. Our
remeshing process is shown in Figure 2. Most or all vertices, however, require displacements
during this process even if the control mesh has been adjusted previously. With that in mind, we
need to reverse the process of Loop subdivision scheme to obtain a better control mesh with
smaller and fewer displacement values (details). A flow chart of our process is shown in Figure 3.
Original
mesh
[Gar97]
Simplified mesh
[Suz99]
Adjusted mesh
[Loo87] & [Lee00]
Error
values
Displaced
values
Twice 1-4 splits
Subdivided and
displaced mesh
1st reverse
1st Reverse
subdivision
mesh
Control mesh
2nd reverse
Figure 3: Flow chart of our method.
4
Vertex point
Edge point (from subdividing a control mesh)
Edge point (from 1st reverse subdivision mesh)
Distance vector
Unit limit normal.
Error value
Figure 4: Error value computation for 2nd reverse step.
In the Loop subdivision, each subdividing level produces two types of vertices: vertex points
and edge points as shown in Figure 4. After obtaining the subdivided and displaced mesh, the
mesh is semi-regular (subdivision connectivity) and all vertices lie on the original surface.
 v1i 
 i 
 v2 
 . 


. 

i −1
 v1 
 i −1   . 
 v2   v i 
n −1
 . 

vni 
 

M ( n + m ) xn  .  = i 
 .   e1 
 i −1   e2i 

vn −1  


.
 v i −1 
 n   . 


 . 
 i 
em −1 
 ei 
 m 
(a) Subdivision matrix
 v1i −1   v1i 
 i −1   i 
 v2   v2 
 .   . 
   
M nxn  .  =  . 
 .   . 
 i −1   i 
vn −1  vn −1 
 v i −1   v i 
 n   n 
 v1i 
 v1i −1 
 i 
 i −1 
 v2 
 v2 
 . 
 . 

 
−1 
 .  = M nxn  . 
 . 
 . 
 i 
 i −1 
vn −1 
vn −1 
 vi 
 v i −1 
 n 
 n 
Where,
v is a vertex point
e is an edge point
i is subdivision level
M is a Loop subdivision matrix
(b) Subdivision matrix and its reverse for vertex points only
Figure 5: Reverse subdivision matrices.
The first reverse step applies to the mesh to obtain a coarser 1st reverse subdivision mesh. We
don’t choose a subdivision matrix in Figure 5(a) because both vertex points and edge points are
used in solving linear system of equation. The subdivision matrix is not a square matrix, and we
need to do least-square approximation via the normal equations to obtain the control vertices. If
that has been done, displaced values would have been required for all vertices (both vertex points
and edge points), and by doing that it defeats our goal of having fewer number of required detail
values (displaced values and error values) and small magnitudes needed for high compression.
Therefore, only the subdivision matrix for vertex points as shown in Figure 5(b) is used instead.
5
Here, the matrix is a square matrix and is invertible assuming a vertex general position. We could
solve for exact control vertices. For large linear system, we use Gauss-Siedel iterative approach to
solve the linear system. Now, we need to calculate displaced values and save them for a
reconstruction phase. To get them, we internally subdivide the 1st reverse subdivision mesh one
level. The vertex points of this subdivided mesh (level 1) are about 25% of total vertices, and they
all have zero displaced values. The edge points may or may not require displaced values. The
percentage of edge points requires zero displaced values as shown in Table 1. Note that the
computation for displaced values for edge points at this level is to find the distance along each
vertex limit normal intersecting with the original surface.
In the second reverse step, we again solve for the control vertices of the 1st reverse mesh in
similar manner to that of the first reverse step. However, the error values (or what we call the
displaced values in the first reverse step) for the edge points are computed differently as shown in
Figure 4. The error values are computed as a dot product of edge point unit limit-normal and
vector from its position (obtained from subdividing the solved control mesh) to its corresponding
position (obtained from the 1st reverse subdivision mesh). The end result is a very small coarse
mesh plus some details using which one can approximate the input mesh. The coarse mesh can be
used as a model much like the NURBS/B-spline control mesh or the model and detail can be used
as a lossy compression scheme.
4
Results
We reconstruct and compare a number of well-known data sets as shown in Figure 6. After
obtaining control meshes, we losslessly compress them using software by 3D Compression
Technologies Inc. to further reduce the output file size. For the encoding of details (error values
and displaced values) we vary the quantization level from 8 to 12 bits per detail value for
comparison. Magnitude of Loop vertex limit normal is used as a scaling factor to further reduce
the already small detail values. We compare the result between 8-bit and 12-bit detail encoding
and found that by encoding with lower bits (8 bits), the reconstructed surface is as good as that of
the higher bits (12 bits). In addition, 8-bit quantization would produce higher number zero details,
which can be further encoded using variable-length scheme. In the variable-length encoding, each
detail value is either encoded by 1 bit for zero detail value or 9 bits otherwise. The ninth bit is to
indicate the required detail encoding. As a result, our output surfaces have high fidelity of
original surface details as well as high compression ratio. Table 1 shows percentage of vertices
requiring no displacedment values at different levels. Comparison of the quantitative compression
results among 8-bit detail encoding, 12-bit detail encoding, and 9-bit variable-length detail
encoding (OPTZ) are shown in Table 2.
5
Conclusion and Future Work
We have shown that we can approximate any arbitrary topological boundary and nonboundary surfaces with high compression and details. We have combined subdivision surface and
scalar-valued displacement for our surface reconstruction. Our domain surface is obtained in such
a way that it is close to the original surface, the magnitude of displaced values tends to be very
small and is favorable as a compression scheme. With the high compression and faithfully
detailed surface, our scheme is promising in areas such as mesh compression, animation, surface
editing and manipulation. Future work includes enhancement of the simplification process in
order to obtain more regular vertex valences and triangular area of the control mesh and a more
sophisticated encoding schemes.
6
6
Acknowledgements
Authors are partially supported by NSF grant IIS 9980166 at PRISM at Arizona State
University. We wish to thank Cyberware for the Horse, Spock and Igea data sets and Stanford
University Computer Graphics Laboratory for the Bunny data. We also wish to thank 3D
Compression Technologies Inc. for allowing us to use its software to losslessly compress the
control meshes. Special thank to Chang Hun Kim and Won Ki Jeong for kindly sending us the
Spock point cloud data.
7
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8
Original mesh
(70,556 triangles)
Original mesh
(96,966 triangles)
8-bit detail encoded
(70,508 triangles)
8-bit detail encoded
(96,960 triangles)
12-bit detail encoded
(70,508 triangles)
12-bit detail encoded
(96,960 triangles)
Original mesh
8-bit detail encoded
12-bit detail encoded
(67,170 triangles)
(67,168 triangles)
(67,168 triangles)
Figure 6: Comparison of compression results of Bunny, Horse and Igea data sets.
9
Data
#V
Level
#V
% of no. of
vertex points
(all vertex points
require zero
displacement)
Spock*
16,389
Igea*
33,587
Bunny+
35,280
Horse*
48,485
Control mesh
1
2
Control mesh
1
2
Control mesh
1
2
Control mesh
1,039
4,121
16,417
2,102
8,398
33,586
2,206
8,818
35,266
3,032
1
2
12,122
48,482
% of no. of edge Total % of
points with zero no. of points
displacement
requiring
zero
displacement
25.21
25.10
15.97
62.65
41.18
87.75
25.02
25.00
8.86
20.47
33.88
45.47
25.02
25.00
13.60
24.34
38.62
49.34
25.01
25.00
55.02
72.15
80.03
97.15
Table 1: Zero displacement at each level (with 8-bit quantization).
Input
Output
Data
#V
#T
Size
(KB)
Spock *
16,389
32,718
575
Igea *
33,587
67,170
1,181
2,102
4,198
73.82
Bunny +
35,280
70,556
1,240
2,206
4,408
Horse *
48,485
96,966
1,704
3,032
6,060
Control mesh
#V
Size
Size
#T
before
after
3DCP
3DCP
(KB)
(KB)
1,039
36.13
3.54
2,044
Details (displacement)
8 bits
12 bits OPTZ
(KB)
(KB)
(KB)
Compress
(control
mesh +
OPTZ)
15.87
22.87
6.21
98.30%
5.85
31.18
46.18
27.15
97.21%
77.5
6.16
32.5
48.5
26.76
97.35%
106.5
6.21
44.5
67.5
9.25
99.09%
Table 2: Quantitative compression results.
Legend:
Data with * courtesy of Cyberware; + courtesy of Stanford Univ. Computer Graphics Lab
#V = Number of vertices
#T = Number of triangles
KB = Kilo-Bytes
3DCP = Lossless compression by 3DCompress.com software (performed on control- meshes)
OPTZ = Optimized encoding scheme (variable-length encoding)
10